Phillips W E, Phuphanich S, Velthuizen R P, Silbiger M L
Department of Radiology, Medical College of Georgia, Augusta 30912-3900, USA.
J Neuroimaging. 1995 Jul;5(3):171-7. doi: 10.1111/jon199553171.
Computer-assisted diagnostic systems enhance the information available from magnetic resonance imaging. Segmentations are the basis on which three-dimensional volume renderings are made. The application of a raw data-based, operator-independent (automatic), magnetic resonance segmentation technique for tissue differentiation is demonstrated. Segmentation images of vasogenic edema with gross and histopathological correlation are presented for demonstration of the technique. A pixel was classified into a tissue class based on a feature vector using unsupervised fuzzy clustering techniques as the pattern recognition method. Correlation of fuzzy segmentations and gross and histopathology were successfully performed. Based on the results of neuropathological correlation, the application of fuzzy magnetic resonance image segmentation to a patient with a brain tumor and extensive edema represents a viable technique for automatically displaying clinically important tissue differentiation. With this pattern recognition technique, it is possible to generate automatic segmentation images that display diagnostically relevant neuroanatomical and neuropathological tissue contrast information from raw magnetic resonance data for use in three-dimensional volume reconstructions.
计算机辅助诊断系统增强了磁共振成像所提供的信息。分割是进行三维体积渲染的基础。本文展示了一种基于原始数据、独立于操作员(自动)的磁共振分割技术在组织分化中的应用。给出了血管源性水肿的分割图像及其与大体病理和组织病理学的相关性,以演示该技术。使用无监督模糊聚类技术作为模式识别方法,基于特征向量将像素分类到组织类别中。成功地进行了模糊分割与大体病理及组织病理学的相关性分析。基于神经病理学相关性的结果,将模糊磁共振图像分割应用于患有脑肿瘤和广泛水肿的患者,是一种自动显示临床上重要组织分化的可行技术。通过这种模式识别技术,可以从原始磁共振数据生成自动分割图像,这些图像显示用于三维体积重建的具有诊断相关性的神经解剖和神经病理组织对比信息。